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单变量预测模型的更新频率研究

On the update frequency of univariate forecasting models

European Journal of Operational Research · 2023
被引 8
ABS 4

中文导读

研究了单变量时间序列预测中模型更新频率的影响,发现中间更新策略(如仅重新估计参数)可在降低计算成本的同时保持或提升预测精度,对制造商、供应商和零售商有实际意义。

Abstract

In univariate time series forecasting, models are typically updated at every single review period. This practice, which includes specifying the optimal form of the model and estimating its parameters, theoretically allows the models to exploit new information and to respond quickly to possible structural breaks. We argue that such updates may be irrelevant in practice, also unnecessarily increasing computational cost and forecast instability. Using two large data sets of monthly and daily series as well as an indicative family of conventional time series models, we investigate several model updating scenarios, ranging from complete model form specification and parameter estimation at every review period to no updating at all. We find that intermediate updating scenarios, including the re-estimation of specific parameters but not necessarily the specification of the model form, can result in similar or even better accuracy with significantly lower computational cost. We also show that similar conclusions hold true for popular machine learning methods, as well as for setups where different approaches are utilized for training the models or accelerating their specification and estimation. We discuss the implications of our findings for manufacturers, suppliers, and retailers and propose avenues for future advances in the area of model frequency updating.

时间序列预测计量经济学机器学习数据挖掘